你说得太多了:在众包环境数据中评估用户隐私

Julien Mineraud, Federico Lancerin, S. Balasubramaniam, M. Conti, S. Tarkoma
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引用次数: 14

摘要

随着廉价传感器的出现,参与式传感的吸引力在过去十年中大大增加。然而,当使用个人拥有的设备进行传感时,它会引起数据生产者的几个隐私问题,从而减少了为服务做出贡献的动机。在本文中,我们评估了众包空气质量监测服务中的恶意服务器可以跟踪为该服务做出贡献的用户位置的程度。参与者定期发送信息,如温度、相对湿度、一氧化碳和周围的亮度,使用一个现成的传感器连接到他们的手机。参与者还会发送他们的粗粒度位置(即,披露他们的手机所连接的蜂窝塔的ID)以及空气质量数据。我们评估攻击者仅使用空气质量数据和手机信号塔位置跟踪参与者的精度。我们对隐私攻击进行了彻底的分析,并表明如果参与者提供至少五个连续的样本,它可以准确地发现用户的目的地,精度超过85%(高达97%)。我们还发现,当环境传感器受到外部条件(例如,暴露在阳光直射下)的影响时,精度会下降,但仍然显著(连续20个样本的54.5%)。
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You are AIRing too Much: Assessing the Privacy of Users in Crowdsourcing Environmental Data
With the availability of inexpensive sensors, the attractiveness of participatory sensing has increased tremendously in the last decade. However, when sensing is performed with devices owned by individuals, it raises several privacy issues with respect to the data producers, and hence reduces the incentive to contribute to the services. In this paper, we evaluate the extent to which a malicious server in a crowdsourcing air quality monitoring service can track the locations of users that contribute to the service. The participants periodically send information, such as temperature, relative humidity, carbon monoxide, and luminosity of their surrounding, using an off-the-shelf sensor connected to their mobile phones. The participants also send their coarse-grain location (i.e., disclosing the ID of the cell tower to which their mobile is coupled) along with the air quality data. We evaluate the precision with which the attacker can track the participants using only air quality data and location of the cell tower. We perform a thorough analysis of the privacy attack and show that it can accurately discover the destination of the users with a precision of more than 85% (up to 97%), if at least five consecutive samples are provided by the participants. We also discovered that the precision drops when the environmental sensors are affected by outside conditions (e.g., exposition to direct sunlight) but remains significant (54.5% for 20 consecutive samples).
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